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ASSET2 - Airport Surface Simulator and Evaluation Tool 2

Build Status

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About

ASSET2 is a generic airport simulation tool for research purpose. It is designed to support multiple airports, to test and to evaluate customized schedulers. Please check out our paper for more information.

This tool is built for Carnegie Mellon University MSIT Practicum Project and Master Independent Study sponsored by the NASA Ames Research Center.

How to Run

Please note that the code runs in Python 3.

Please avoid Python>=3.7.0 because it breaks the legacy Cython, which one of the dependencies line-profiler (test package) depends on. The issue has not been fixed at the moment. Try to install a lower version instead.

First-Time Run

$ mkdir -p ~/.config/matplotlib/
$ echo "backend : Agg" >> ~/.config/matplotlib/matplotlibrc
$ conda create -n myenv python=3.6
$ conda activate myenv
$ pip install -r requirements.txt # install dependencies locally
$ cd data/real-west-all-terminals
$ python generate_scenario.py
$ python generate.py
$ cd ../../
$ python visualization/server.py
(or $pythonw visualization/server.py)

Modify Airport Map

Place airport related data (kml file) under data folder like data/sfo-terminal-2/build/ (use IATA airport code).

Now we build the whole sfo map on Google map: https://drive.google.com/open?id=1wUbdfLDRcGiitjo_h5ar-xlAO7OmdVOg&usp=sharing

If you need to change it, export one kml file and change codes at 'data/*/build/generate.py', especially 'class LayerType(Enum)'

We design taxiways in the map following west plan that let all departure airlines share same and fixed taxiways and all arrival airlines share the same and fixed taxiways. (shortest path algorithm)

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Prepare Airline Data

We use the web crawler to get real sfo data from www.flysfo.com, please refer to data/sfo/crawl_scenario.py for more infomation.

'data//build/generate_scenario.py' and 'data//build/time_manage.py' are both used to handle real data.

Run

  1. import the kml file to 'data/*/build/'
  2. create one ymal file for it under 'plans/*.yaml'
  3. run "python3.6 visualization/server.py"
  4. after opening the link, all yaml files under 'plans/' will be shown on the menu. You can choose one. Maybe it needs several minutes to show new data unless you already have cache.

Quick start (use stream mode)

python visualization/server.py
In the web page, select sfo-all-terminals as the data, and then you can see the simulation right away.

Besides that, you can also use batch mode according to the following.

batch mode

$ python simulator.py -f plans/base.yaml
$ python simulator.py -f batch_plans/simple-uc.yaml # Batch Run

batch mode is used to run cached data. You may need it because our system will be slow after running two hours.

Visualization

$ python visualization/server.py

Tests

$ python -m unittest discover tests    # all tests
$ python -m unittest tests/test_scheduler.py   # single test

Check Style

$ pycodestyle --show-pep8 --show-source --exclude=venv .
$ ls -1 *py scheduler/*py | xargs pylint # optional but recommended

Documentation

$ pydoc <python-file-name-without-.py>

Convert data to CSV for analysis

$ python csvdata.py real-west-all-terminals

Developer Guidelines

Sequential Diagram

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Experiment Flow

The following steps are suggested for lauching an successful experiment systematically.

  1. Compose and launch a single plan to find out (a) the upper bound of the value of the experimental variable and (b) the execution time for a single run.

    $ time ./simulator.py -f plans/<upper-bound-to-try>.yaml
    
  2. Use the visualization tool on the single plans you launched in step one to see if things are working as expected. For example, you should check if the aircrafts are busy enough in order to retrieve a meaningful plot.

     $ ./visualiztion/server.py
    
  3. By using the execution time and upper bound information we collected from the previous steps we can then lanuch a batch run with try_until_success: False. The execution time of this batch run should be able to estimated.

  4. By using the execution time and failure rate information from the previous steps, we can then launch a batch run with try_until_success: True to obtain meaningful final results.

Style

Please ALWAYS follow PEP 8 -- Style Guide for Python Code for readability and consistency.

Logging

Default logging level is set in simulation.py, and please initialize logging for each class in __init__ like this way:

self.logger = logging.getLogger(__name__)

Debug

Put breakpoint in this way:

import pdb; pdb.set_trace()

Also, please refer to our Google Map for debugging the details.

Units

For consistency, following units are used everywhere in the code:

Time: second
Length: ft

Cache

Routing table calculated by the routing expert will be cached at cache/ so please make sure all the objects in routing table can be dumped into binary file using pickle. Ex. logger can't be dumped.

Note that cache may cause errors or bugs in many cases because stale data is used.

Clock

Simulation time (sim_time) indicates the time should be passed in each tick() and it can be accessed globally in any place by using following syntax:

from clock import Clock
self.logger.debug("sim time is %s", Clock.sim_time)

Profile

To speedup the simulation, we can apply some profiling technique to locate the slow code. Add @profile decorator at the beginning of the function you want to profile, then do following commands to obtain a report of the execution time of each line within the function.

$ kernprof -l ./simulator -f <your_plan>.yaml
$ python3 -m line_profiler simulator.py.lprof

TODO

Right now, we have two types of airport surface models: node-link model and graph model. The graph model (in graph_model.py) is newly added and can be used by scheduler and controller. However, right now, this script generates an arrival and a departure model for one airport. Need to find a way to merge these two information so that scheduler can use to manage aircrafts' movements.

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